利用深度学习技术诊断皮肤癌:技术综述

Shailja Pandey, G. K. Shankhdhar
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摘要

在当今科技发达的社会,使用机器而不是人工干预来防治皮肤癌至关重要。只要皮肤外观发生异常变化,就有可能患上皮肤癌。要想更有效地诊断黑色素瘤,就必须将皮肤科专业知识与计算机视觉方法相结合。因此,有必要了解多种检测方法,以帮助医生及早发现皮肤癌。本研究论文对使用深度学习技术诊断皮肤癌的进展进行了全面的技术回顾。由于皮肤癌的发病率如此之高,为了获得更好的治疗效果,早期识别至关重要。深度学习是机器学习的一种,在医疗领域的应用中,它在皮肤癌的识别方面大有可为。本研究调查了目前最前沿的皮肤癌诊断深度学习方法、数据集和评估指标。本研究讨论了将深度学习用于皮肤癌检测的优点和缺点。面临的挑战包括有关患者数据的伦理和隐私考虑、将模型纳入临床程序以及数据集偏差和泛化问题。
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Skin cancer diagnosis using the deep learning advancements: a technical review
It is vital in today's technologically advanced society to combat skin cancer using machines rather than human intervention. Any time the look of the skin changes abnormally, there is a danger that the person might be at risk for skin cancer. Dermatology expertise and computer vision methods must be merged to diagnose melanoma more effectively. Because of this, it is necessary to learn about numerous detection methods to help doctors discover skin cancer at an early stage. This research paper provides a comprehensive technical review of the advancements in using deep learning techniques for the diagnosis of skin cancer. Since skin cancer is so prevalent, early identification is essential for better treatment results. Among the medical uses where deep learning, a kind of machine learning, has shown promise is in the identification of skin cancer. This research investigates the most cutting-edge skin cancer diagnostic deep-learning approaches, datasets, and assessment metrics currently in use. This study discusses the benefits and drawbacks of using deep learning for skin cancer detection. Challenges include ethical and privacy considerations about patient data, the incorporation of models into clinical procedures, and problems with dataset bias and generalisation.
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